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Using Principle Component Analysis (PCA) in classification

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KaMu
KaMu el 24 de Jun. de 2014
Comentada: jin li el 13 de Jul. de 2018
Hi All, I am working in a project that classify certain texture images. I will be using Gaussian Mixture model to classify all the database into textured and non-textured images.
Now, I am using PCA to reduce the dimension of my data that is 512 dimensions, so I can train the GMM model. The results from PCA are new variables and those variables will be used in the training process:
[wcoeff,score,latent,~,explained] = pca(AllData);
The question is: in the testing process how can I use the wcoeff to get the same variables? Do I just multiply the wcoeff with the new image?
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Delsavonita Delsavonita
Delsavonita Delsavonita el 8 de Mayo de 2018
Editada: Adam el 8 de Mayo de 2018
i have the same problem too, since you post the question on 2014, you must be done doing your project, so can you kindly send me the solution for this problem ? i really need this...
Adam
Adam el 8 de Mayo de 2018
Don't post your e-mail address in a public forum.

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Respuestas (1)

KaMu
KaMu el 26 de Jun. de 2014
Editada: KaMu el 26 de Jun. de 2014
I keep received emails that some one answer my question but I can't see any answers!
  2 comentarios
Image Analyst
Image Analyst el 8 de Mayo de 2018
Because we don't understand your question. See my attached PCA demo. It will show you how to get the PC components.
jin li
jin li el 13 de Jul. de 2018
It is right. He finally display each component. first calculate coeff then component=image matrix * coeff so this will be eigenimage

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